keyword
https://read.qxmd.com/read/38681051/culturally-sensitive-patient-centered-healthcare-a-focus-on-health-behavior-modification-in-low-and-middle-income-nations-insights-from-indonesia
#41
JOURNAL ARTICLE
D A Cipta, D Andoko, A Theja, A V E Utama, H Hendrik, D G William, N Reina, M T Handoko, N Lumbuun
Patient-centered, culturally sensitive healthcare acknowledges the profound impact of cultural beliefs on health behaviors and outcomes, particularly vital in low and middle-income countries (LMICs). Within Indonesia, distinct cultural factors are pivotal in empowering patients, necessitating their integration into healthcare practices. For example, the cultural concept of gotong royong , emphasizing communal collaboration, presents an opportunity to foster community support networks among patients. Moreover, honoring familial ties and involving family members in decision-making enhances patient empowerment...
2024: Frontiers in Medicine
https://read.qxmd.com/read/38680659/facilitating-clinically-relevant-skin-tumor-diagnostics-with-spectroscopy-driven-machine-learning
#42
JOURNAL ARTICLE
Emil Andersson, Jenny Hult, Carl Troein, Magne Stridh, Benjamin Sjögren, Agnes Pekar-Lukacs, Julio Hernandez-Palacios, Patrik Edén, Bertil Persson, Victor Olariu, Malin Malmsjö, Aboma Merdasa
In the dawning era of artificial intelligence (AI), health care stands to undergo a significant transformation with the increasing digitalization of patient data. Digital imaging, in particular, will serve as an important platform for AI to aid decision making and diagnostics. A growing number of studies demonstrate the potential of automatic pre-surgical skin tumor delineation, which could have tremendous impact on clinical practice. However, current methods rely on having ground truth images in which tumor borders are already identified, which is not clinically possible...
May 17, 2024: IScience
https://read.qxmd.com/read/38680621/the-integration-of-gps-and-visual-navigation-for-autonomous-navigation-of-an-ackerman-steering-mobile-robot-in-cotton-fields
#43
JOURNAL ARTICLE
Canicius Mwitta, Glen C Rains
Autonomous navigation in agricultural fields presents a unique challenge due to the unpredictable outdoor environment. Various approaches have been explored to tackle this task, each with its own set of challenges. These include GPS guidance, which faces availability issues and struggles to avoid obstacles, and vision guidance techniques, which are sensitive to changes in light, weeds, and crop growth. This study proposes a novel idea that combining GPS and visual navigation offers an optimal solution for autonomous navigation in agricultural fields...
2024: Frontiers in Robotics and AI
https://read.qxmd.com/read/38680255/predicting-intensive-care-unit-acquired-weakness-a-multilayer-perceptron-neural-network-approach
#44
EDITORIAL
Carlos Martin Ardila, Daniel González-Arroyave, Mateo Zuluaga-Gómez
In this editorial, we comment on the article by Wang and Long, published in a recent issue of the World Journal of Clinical Cases . The article addresses the challenge of predicting intensive care unit-acquired weakness (ICUAW), a neuromuscular disorder affecting critically ill patients, by employing a novel processing strategy based on repeated machine learning. The editorial presents a dataset comprising clinical, demographic, and laboratory variables from intensive care unit (ICU) patients and employs a multilayer perceptron neural network model to predict ICUAW...
April 26, 2024: World Journal of Clinical Cases
https://read.qxmd.com/read/38678078/soft-ground-micro-tbm-jack-speed-and-torque-prediction-using-machine-learning-models-through-operator-data-and-micro-tbm-log-data-synchronization
#45
JOURNAL ARTICLE
Kursat Kilic, Owada Narihiro, Hajime Ikeda, Tsuyoshi Adachi, Youhei Kawamura
Tunnel Boring Machines (TBMs) are pivotal in underground projects like subways, highways, and water supply tunnels. Predicting and monitoring jack speed and torque is crucial for optimizing TBM excavation efficiency. Conventionally, skilled operators manually adjust numerous tunnelling parameters to regulate the machine's progress. In contrast, machine learning (ML) algorithms offer a promising avenue where computers learn from operator actions to establish parameter relationships autonomously. This study introduces an innovative approach to enhancing operator monitoring and TBM data comprehension...
April 27, 2024: Scientific Reports
https://read.qxmd.com/read/38677774/personalised-prediction-of-maintenance-dialysis-initiation-in-patients-with-chronic-kidney-disease-stages-3-5-a-multicentre-study-using-the-machine-learning-approach
#46
MULTICENTER STUDY
Anh Trung Hoang, Phung-Anh Nguyen, Thanh Phuc Phan, Gia Tuyen Do, Huu Dung Nguyen, I-Jen Chiu, Chu-Lin Chou, Yu-Chen Ko, Tzu-Hao Chang, Chih-Wei Huang, Usman Iqbal, Yung-Ho Hsu, Mai-Szu Wu, Chia-Te Liao
BACKGROUND: Optimal timing for initiating maintenance dialysis in patients with chronic kidney disease (CKD) stages 3-5 is challenging. This study aimed to develop and validate a machine learning (ML) model for early personalised prediction of maintenance dialysis initiation within 1-year and 3-year timeframes among patients with CKD stages 3-5. METHODS: Retrospective electronic health record data from the Taipei Medical University clinical research database were used...
April 27, 2024: BMJ health & care informatics
https://read.qxmd.com/read/38676745/machine-learning-ensembles-neural-network-hybrid-and-sparse-regression-approaches-for-weather-based-rainfed-cotton-yield-forecast
#47
JOURNAL ARTICLE
Girish R Kashyap, Shankarappa Sridhara, Konapura Nagaraja Manoj, Pradeep Gopakkali, Bappa Das, Prakash Kumar Jha, P V Vara Prasad
Cotton is a major economic crop predominantly cultivated under rainfed situations. The accurate prediction of cotton yield invariably helps farmers, industries, and policy makers. The final cotton yield is mostly determined by the weather patterns that prevail during the crop growing phase. Crop yield prediction with greater accuracy is possible due to the development of innovative technologies which analyses the bigdata with its high-performance computing abilities. Machine learning technologies can make yield prediction reasonable and faster and with greater flexibility than process based complex crop simulation models...
April 27, 2024: International Journal of Biometeorology
https://read.qxmd.com/read/38676389/analysis-of-inclisiran-in-the-us-fda-adverse-event-reporting-system-faers-a-focus-on-overall-patient-population-and-sex-specific-subgroups
#48
JOURNAL ARTICLE
YuBin He, Xin Guan, YaYun Zhang, Zixiong Zhu, YanHui Zhang, Yue Feng, Xuewen Li
BACKGROUND: our study aimed to identify inclisiran-related adverse events(AEs) for primary hypercholesterolemia and arteriosclerotic cardiovascular disease(ASCVD) from the US FDA Adverse Event Reporting System (FAERS) database, analyzing its links to AEs in the overall patient population and sex-specific subgroups to improve medication safety. METHODS: We analyzed inclisiran-related AEs signals by using statistical methods like Reporting Odds Ratio (ROR), Proportional Reporting Ratios (PRR), Bayesian Confidence Propagation Neural Network (BCPNN), and Multi-item Gamma-Poisson Shrinker (MGPS)...
April 27, 2024: Expert Opinion on Drug Safety
https://read.qxmd.com/read/38676316/power-position-and-social-relations-is-the-espoused-absence-of-hierarchy-in-open-dialogue-na%C3%A3-ve
#49
JOURNAL ARTICLE
Rochelle Einboden, Lisa Dawson, Andrea McCloughen, Niels Buus
Open Dialogue practitioners aim to reduce social hierarchies by not privileging any one voice in social network conversations, and thus creating space for a polyphony of voices. This sits in contrast to the traditional privileging of those voices credited with more knowledge or power because of social position or professional expertise. Using qualitative interviews, the aim of this current study was to explore Open Dialogue practitioners' descriptions of challenges in implementing Open Dialogue at a women's health clinic in Australia...
April 26, 2024: Health (London)
https://read.qxmd.com/read/38676273/prototype-learning-for-medical-time-series-classification-via-human-machine-collaboration
#50
JOURNAL ARTICLE
Jia Xie, Zhu Wang, Zhiwen Yu, Yasan Ding, Bin Guo
Deep neural networks must address the dual challenge of delivering high-accuracy predictions and providing user-friendly explanations. While deep models are widely used in the field of time series modeling, deciphering the core principles that govern the models' outputs remains a significant challenge. This is crucial for fostering the development of trusted models and facilitating domain expert validation, thereby empowering users and domain experts to utilize them confidently in high-risk decision-making contexts (e...
April 22, 2024: Sensors
https://read.qxmd.com/read/38676257/covid-19-hierarchical-classification-using-a-deep-learning-multi-modal
#51
JOURNAL ARTICLE
Albatoul S Althenayan, Shada A AlSalamah, Sherin Aly, Thamer Nouh, Bassam Mahboub, Laila Salameh, Metab Alkubeyyer, Abdulrahman Mirza
Coronavirus disease 2019 (COVID-19), originating in China, has rapidly spread worldwide. Physicians must examine infected patients and make timely decisions to isolate them. However, completing these processes is difficult due to limited time and availability of expert radiologists, as well as limitations of the reverse-transcription polymerase chain reaction (RT-PCR) method. Deep learning, a sophisticated machine learning technique, leverages radiological imaging modalities for disease diagnosis and image classification tasks...
April 20, 2024: Sensors
https://read.qxmd.com/read/38676210/learning-based-hierarchical-decision-making-framework-for-automatic-driving-in-incompletely-connected-traffic-scenarios
#52
JOURNAL ARTICLE
Fan Yang, Xueyuan Li, Qi Liu, Xiangyu Li, Zirui Li
The decision-making algorithm serves as a fundamental component for advancing the level of autonomous driving. The end-to-end decision-making algorithm has a strong ability to process the original data, but it has grave uncertainty. However, other learning-based decision-making algorithms rely heavily on ideal state information and are entirely unsuitable for autonomous driving tasks in real-world scenarios with incomplete global information. Addressing this research gap, this paper proposes a stable hierarchical decision-making framework with images as the input...
April 18, 2024: Sensors
https://read.qxmd.com/read/38676155/optimisation-and-calibration-of-bayesian-neural-network-for-probabilistic-prediction-of-biogas-performance-in-an-anaerobic-lagoon
#53
JOURNAL ARTICLE
Benjamin Steven Vien, Thomas Kuen, Louis Raymond Francis Rose, Wing Kong Chiu
This study aims to enhance diagnostic capabilities for optimising the performance of the anaerobic sewage treatment lagoon at Melbourne Water's Western Treatment Plant (WTP) through a novel machine learning (ML)-based monitoring strategy. This strategy employs ML to make accurate probabilistic predictions of biogas performance by leveraging diverse real-life operational and inspection sensor and other measurement data for asset management, decision making, and structural health monitoring (SHM). The paper commences with data analysis and preprocessing of complex irregular datasets to facilitate efficient learning in an artificial neural network...
April 15, 2024: Sensors
https://read.qxmd.com/read/38676075/geological-hazard-susceptibility-analysis-and-developmental-characteristics-based-on-slope-unit-using-the-xinxian-county-henan-province-as-an-example
#54
JOURNAL ARTICLE
Wentao Yang, Ruiqing Niu, Rongjun Si, Jun Li
Geological hazards in Xinxian County, Xinyang City, Henan Province, are characterized by their small scale, wide distribution, and significant influence from regional tectonics. This study focuses on collapses and landslide hazards within the area, selecting twelve evaluation factors: aspect, slope shape, normalized difference vegetation index (NDVI), topographic relief, distance from geological structure, slope, distance from roads, land use cover type, area of land change (2012-2022), average annual rainfall (2012-2022), and river network density...
April 11, 2024: Sensors
https://read.qxmd.com/read/38676073/prediction-of-degraded-infrastructure-conditions-for-railway-operation
#55
JOURNAL ARTICLE
Juan de Dios Sanz Bobi, Pablo Garrido Martínez-Llop, Pablo Rubio Marcos, Álvaro Solano Jiménez, Javier Gómez Fernández
In the railway sector, rolling stock and infrastructure must be maintained in perfect condition to ensure reliable and safe operation for passengers. Climate change is affecting the urban and regional infrastructure through sea level rise, water accumulations, river flooding, and other increased-frequency extreme natural situations (heavy rains or snows) which pose a challenge to maintenance. In this paper, the use of artificial intelligence based on predictive maintenance implementation is proposed for the early detection of degraded conditions of a bridge due to extreme climatic conditions...
April 11, 2024: Sensors
https://read.qxmd.com/read/38676047/in-season-cotton-yield-prediction-with-scale-aware-convolutional-neural-network-models-and-unmanned-aerial-vehicle-rgb-imagery
#56
JOURNAL ARTICLE
Haoyu Niu, Janvita Reddy Peddagudreddygari, Mahendra Bhandari, Juan A Landivar, Craig W Bednarz, Nick Duffield
In the pursuit of sustainable agriculture, efficient water management remains crucial, with growers relying on advanced techniques for informed decision-making. Cotton yield prediction, a critical aspect of agricultural planning, benefits from cutting-edge technologies. However, traditional methods often struggle to capture the nuanced complexities of crop health and growth. This study introduces a novel approach to cotton yield prediction, leveraging the synergy between Unmanned Aerial Vehicles (UAVs) and scale-aware convolutional neural networks (CNNs)...
April 10, 2024: Sensors
https://read.qxmd.com/read/38676017/lyapunov-drift-plus-penalty-based-cooperative-uplink-scheduling-in-dense-wi-fi-networks
#57
JOURNAL ARTICLE
Yonggang Kim, Yohan Kim
In high-density network environments with multiple access points (APs) and stations, individual uplink scheduling by each AP can severely interfere with the uplink transmissions of neighboring APs and their associated stations. In congested areas where concurrent uplink transmissions may lead to significant interference, it would be beneficial to deploy a cooperative scheduler or a central coordinating entity responsible for orchestrating cooperative uplink scheduling by assigning several neighboring APs to support the uplink transmission of a single station within a proximate service area to alleviate the excessive interference...
April 9, 2024: Sensors
https://read.qxmd.com/read/38674339/dranetsplicer-a-splice-site-prediction-model-based-on-deep-residual-attention-networks
#58
JOURNAL ARTICLE
Xueyan Liu, Hongyan Zhang, Ying Zeng, Xinghui Zhu, Lei Zhu, Jiahui Fu
The precise identification of splice sites is essential for unraveling the structure and function of genes, constituting a pivotal step in the gene annotation process. In this study, we developed a novel deep learning model, DRANetSplicer, that integrates residual learning and attention mechanisms for enhanced accuracy in capturing the intricate features of splice sites. We constructed multiple datasets using the most recent versions of genomic data from three different organisms, Oryza sativa japonica , Arabidopsis thaliana and Homo sapiens ...
March 26, 2024: Genes
https://read.qxmd.com/read/38674070/single-cell-informatics-for-tumor-microenvironment-and-immunotherapy
#59
REVIEW
Jiabao Tian, Xinyu Bai, Camelia Quek
Cancer comprises malignant cells surrounded by the tumor microenvironment (TME), a dynamic ecosystem composed of heterogeneous cell populations that exert unique influences on tumor development. The immune community within the TME plays a substantial role in tumorigenesis and tumor evolution. The innate and adaptive immune cells "talk" to the tumor through ligand-receptor interactions and signaling molecules, forming a complex communication network to influence the cellular and molecular basis of cancer. Such intricate intratumoral immune composition and interactions foster the application of immunotherapies, which empower the immune system against cancer to elicit durable long-term responses in cancer patients...
April 19, 2024: International Journal of Molecular Sciences
https://read.qxmd.com/read/38671531/comparative-benefits-and-harms-of-perioperative-interventions-to-prevent-chronic-pain-after-orthopedic-surgery-a-systematic-review-and-network-meta-analysis-of-randomized-trials
#60
JOURNAL ARTICLE
Mohammed Al-Asadi, Kian Torabiardakani, Andrea J Darzi, Ian Gilron, Maura Marcucci, James S Khan, Luis E Chaparro, Brittany N Rosenbloom, Rachel J Couban, Andrew Thomas, Jason W Busse, Behnam Sadeghirad
BACKGROUND: Chronic postsurgical pain (CPSP) is common following musculoskeletal and orthopedic surgeries and is associated with impairment and reduced quality of life. Several interventions have been proposed to reduce CPSP; however, there remains uncertainty regarding which, if any, are most effective. We will perform a systematic review and network meta-analysis of randomised trials to assess the comparative benefits and harms of perioperative pharmacological and psychological interventions directed at preventing chronic pain after musculoskeletal and orthopedic surgeries...
April 26, 2024: Systematic Reviews
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